Machine Learning Scientist II, Advertising Opti... @ Wayfair
placeBengaluru, Karnataka, India
businessOn Site
Posted 2 days ago
Your Application Journey
Interview
Email Hiring Manager
****** @wayfair.com
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Job Details
About Wayfair
Wayfair is moving the world so that anyone can live in a home they love. Over 3,000 engineers drive a data-centric culture to power search, marketing, and recommendations technology for a vast assortment of home goods.
Role Overview: Machine Learning Scientist II, Advertising Optimization & Automation
In this role, you will design, build, deploy, and refine large-scale machine learning models and algorithmic decision-making systems. Collaborate with scientists, engineers, analysts, and product managers to address real-world challenges and directly impact Wayfair’s revenue.
Responsibilities
- Develop and refine machine learning models for search, recommendations, and query understanding.
- Collaborate with commercial and cross-functional teams on analytical solutions.
- Deploy scalable ML solutions and follow best practices in production environments.
- Identify opportunities for model improvements and project ROI.
- Maintain a customer-centric approach in all problem-solving activities.
Required Qualifications
- 3+ years industry experience with a Bachelor’s/Master’s or 1-2 years with a PhD in a related field.
- Strong understanding of statistical models, regression, clustering, decision trees, neural networks, etc.
- Proficiency in Python ML ecosystem (pandas, NumPy, scikit-learn, XGBoost, etc.).
- Experience with production-deployed machine learning solutions.
- Excellent communication skills and intellectual curiosity.
Preferred Skills
- Experience in e-commerce or online search systems.
- Knowledge of modern NLP techniques and generative AI applications.
- Experience with deep learning frameworks like PyTorch and infrastructure tools.
Work Location & Schedule
This position is based in Bangalore, India with a hybrid work schedule requirement.
Key skills/competency
Machine Learning, Python, NLP, Search Ranking, Algorithms, Production Deployment, E-commerce, Statistical Models, Automation, Data Analysis
How to Get Hired at Wayfair
🎯 Tips for Getting Hired
- Research Wayfair's culture: Understand mission, values, and tech innovations.
- Customize your resume: Highlight machine learning and e-commerce projects.
- Prepare for technical interviews: Review ML algorithms and Python skills.
- Network on LinkedIn: Connect with current or former Wayfair employees.
📝 Interview Preparation Advice
Technical Preparation
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Review ML algorithms and statistical modeling.
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Practice Python coding and ML library usage.
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Deploy models in a test production environment.
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Study cloud platforms and ML orchestration tools.
Behavioral Questions
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Describe a time you solved a technical challenge.
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Explain collaboration with cross-functional teams.
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Discuss handling tight deadlines under pressure.
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Share examples of learning from past projects.
Frequently Asked Questions
What qualifications does Wayfair seek for the Machine Learning Scientist II role?
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How important is e-commerce experience for Wayfair’s Machine Learning Scientist II?
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What technical skills are required for the Machine Learning Scientist II at Wayfair?
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Does Wayfair require candidates to be located in a specific location for this role?
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What role does collaboration play in the Machine Learning Scientist II position at Wayfair?
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How does the Machine Learning Scientist II position impact Wayfair’s business?
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What kind of machine learning models will a candidate work on?
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How is candidate performance measured for this role at Wayfair?
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What is the interview process like at Wayfair for this Machine Learning role?
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How can applicants best prepare their resume for Wayfair’s Machine Learning Scientist II role?
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